We investigate the role of data complexity in the context of binary classification problems. The universal data complexity is defined for a data set as the Kolmogorov complexity of the mapping enforced by the data set. It is closely related to several existing principles used in machine learning such as Occam's razor, the minimum description length, and the Bayesian approach. The data complexity can also be defined based on a learning model, which is more realistic for applications. We demonstrate the application of the data complexity in two learning problems, data decomposition and data pruning. In data decomposition, we illustrate that a data set is best approximated by its principal subsets which are Pareto optimal with respect to the c...
We introduce an asymmetric distance in the space of learning tasks and a framework to compute their ...
When feasible, learning is a very attractive alternative to explicit programming. This is particular...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...
We investigate the role of data complexity in the context of binary classification problems. The uni...
Abstract. We investigate the role of data complexity in the context of binary classification problem...
Machines capable of automatic pattern recognition have many fascinating uses. Algorithms for supervi...
AbstractThis is an expository paper on the latest results in the theory of stochastic complexity and...
In a statistical setting of the classification (pattern recognition) problem the number of examples ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Statistical learn...
Kolmogorov complexity is a theory based on the premise that the complexity of a binary string can be...
We apply information-based complexity analysis to support vector machine (SVM) algorithms, with the ...
Many machine learning algorithms aim at finding "simple" rules to explain training data. T...
The first part of this paper is a review of basic notions and results connected with Kolmogorov comp...
Many machine learning algorithms aim at finding "simple" rules to explain training data. T...
Abstract Most data complexity studies have focused on characterizing the complexity of the entire da...
We introduce an asymmetric distance in the space of learning tasks and a framework to compute their ...
When feasible, learning is a very attractive alternative to explicit programming. This is particular...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...
We investigate the role of data complexity in the context of binary classification problems. The uni...
Abstract. We investigate the role of data complexity in the context of binary classification problem...
Machines capable of automatic pattern recognition have many fascinating uses. Algorithms for supervi...
AbstractThis is an expository paper on the latest results in the theory of stochastic complexity and...
In a statistical setting of the classification (pattern recognition) problem the number of examples ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Statistical learn...
Kolmogorov complexity is a theory based on the premise that the complexity of a binary string can be...
We apply information-based complexity analysis to support vector machine (SVM) algorithms, with the ...
Many machine learning algorithms aim at finding "simple" rules to explain training data. T...
The first part of this paper is a review of basic notions and results connected with Kolmogorov comp...
Many machine learning algorithms aim at finding "simple" rules to explain training data. T...
Abstract Most data complexity studies have focused on characterizing the complexity of the entire da...
We introduce an asymmetric distance in the space of learning tasks and a framework to compute their ...
When feasible, learning is a very attractive alternative to explicit programming. This is particular...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...